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Weed Image Classification using Wavelet Transform, Stepwise Linear Discriminant Analysis, and Support Vector Machines for an Automatic Spray Control System

机译:使用小波变换,逐步线性判别分析和支持向量机的自动喷雾控制系统杂草图像分类

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We tested and validated the accuracy of wavelet transform along with stepwise linear discriminant analysis (SWLDA) and support vector machines (SVMs) for crop/weed classification for real time selective herbicides systems. Unlike previous systems, the proposed algorithm involves a pre-processing step, which helps to eliminate lighting effects to ensure high accuracy in real-life scenarios. We tested a large group of wavelets (46) and decomposed them up to four levels to classify weed images into weeds with broad leaves versus weeds with narrow leaves classes. SWLDA was then employed to reduce the feature space by extracting only the most meaningful features. Finally, the features provided by SWLDA were fed to the SVMs for classification. The proposed method was tested on a database of 1200 samples, which is a much larger database size than that studied previously (200-400 samples). Using confusion matrices, the crop/ weed classification results obtained using different wavelets at different decomposition levels were compared, and this approach was also compared with existing techniques that use statistical and structural approaches. The overall classification accuracy obtained using the symlet wavelet family was 98.1%. These results represent an improvement of 14% in performance compared with existing techniques.
机译:我们测试并验证了小波变换的准确性以及逐步线性判别分析(SWLDA)和支持向量机(SVM)的实时选择性除草剂系统的作物/杂草分类。与以前的系统不同,所提出的算法涉及一个预处理步骤,该步骤有助于消除照明影响,以确保在现实生活中的高精度。我们测试了大量的小波(46),并将它们分解为四个级别,以将杂草图像分类为宽叶杂草与窄叶杂草。然后采用SWLDA通过仅提取最有意义的特征来减少特征空间。最后,将SWLDA提供的功能馈送到SVM进行分类。该方法在1200个样本的数据库上进行了测试,该数据库的大小比以前研究的数据库(200-400个样本)大得多。使用混淆矩阵,比较了在不同分解级别使用不同小波获得的农作物/杂草分类结果,并将该方法与使用统计和结构方法的现有技术进行了比较。使用symlet小波族获得的总分类精度为98.1%。与现有技术相比,这些结果表示性能提高了14%。

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